OPEn: An Open-ended Physics Environment for Learning Without a Task

10/13/2021
by   Chuang Gan, et al.
57

Humans have mental models that allow them to plan, experiment, and reason in the physical world. How should an intelligent agent go about learning such models? In this paper, we will study if models of the world learned in an open-ended physics environment, without any specific tasks, can be reused for downstream physics reasoning tasks. To this end, we build a benchmark Open-ended Physics ENvironment (OPEn) and also design several tasks to test learning representations in this environment explicitly. This setting reflects the conditions in which real agents (i.e. rolling robots) find themselves, where they may be placed in a new kind of environment and must adapt without any teacher to tell them how this environment works. This setting is challenging because it requires solving an exploration problem in addition to a model building and representation learning problem. We test several existing RL-based exploration methods on this benchmark and find that an agent using unsupervised contrastive learning for representation learning, and impact-driven learning for exploration, achieved the best results. However, all models still fall short in sample efficiency when transferring to the downstream tasks. We expect that OPEn will encourage the development of novel rolling robot agents that can build reusable mental models of the world that facilitate many tasks.

READ FULL TEXT

page 2

page 4

research
08/15/2019

PHYRE: A New Benchmark for Physical Reasoning

Understanding and reasoning about physics is an important ability of int...
research
05/15/2022

Aligning Robot Representations with Humans

As robots are increasingly deployed in real-world scenarios, a key quest...
research
03/25/2021

The ThreeDWorld Transport Challenge: A Visually Guided Task-and-Motion Planning Benchmark for Physically Realistic Embodied AI

We introduce a visually-guided and physics-driven task-and-motion planni...
research
03/31/2023

Accelerating exploration and representation learning with offline pre-training

Sequential decision-making agents struggle with long horizon tasks, sinc...
research
08/21/2020

Learning Affordance Landscapes forInteraction Exploration in 3D Environments

Embodied agents operating in human spaces must be able to master how the...
research
07/15/2020

Active World Model Learning with Progress Curiosity

World models are self-supervised predictive models of how the world evol...
research
07/03/2020

Learning intuitive physics and one-shot imitation using state-action-prediction self-organizing maps

Human learning and intelligence work differently from the supervised pat...

Please sign up or login with your details

Forgot password? Click here to reset